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进阶搜寻
On
4 到 6 年
6 到 10 年
10 到 15 年
15 年以上
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ASP.NET Full Stack Engineer @日月光半導體製造股份有限公司
2024 ~ 现在
後端工程師/軟體工程師
一個月內
Vue.js
Python
Java
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
義守大學
資訊管理學系
Avatar of 陳玄翀.
Avatar of 陳玄翀.
曾任
Consultant @Freelance
2022 ~ 现在
Senior Backend Engineer | DevOps | SRE
一個月內
導整體系統設計。開發期間持續對核心架構最佳化與重構,並透過 Code Review 維持程式碼品質,降低開發成員維護成本。 前端經驗 ASP.NET MVC BootStrap RWD 響應式設計 JavaScript / JQuery / AJAX Sass / Scss 後端經驗 Golang ASP.NET Web API 2 Entity Framework AutoMapper Json.NET SignalR SQL Server MySQL Redis DevOps 經驗 IIS / Express / Nginx 安
ASP.NET MVC
ASP.NET Web API
C#
待业中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
淡江大學 Tamkang University
資訊工程
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Avatar of the user.
資深前端工程師 @神坊資訊股份有限公司(霖園集團)
2022 ~ 现在
前端工程師、後端工程師、全端工程師
一個月內
c#
ASP.NET MVC
HTML5
职场能力评价1
就职中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
大葉大學 DaYeh University
資訊工程
Avatar of 陳皓軒.
Avatar of 陳皓軒.
曾任
Analyst Programmer @Logistics and Supply Chain MultiTech R&D Centre
2023 ~ 2024
Software Engineer / Backend Engineer
一個月內
陳皓軒 Hao GitHub Medium LinkedIn Taipei,TW E-mail: [email protected] 29歲 簡介 我是 Hao,有 4 年後端開發經驗,其中 3 年在電商。對於程式碼品質有自我要求,除了開發需求外也同時撰寫單元測試以及重構,且擁有大流量、效能調教等經驗。我不是只將事情做完,而是做好 工作流
C#
ASP.NET MVC
.NET Core
待业中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立臺灣海洋大學
資訊工程學系
Avatar of Hang Do.
Avatar of Hang Do.
Software Engineer @Cathay United Bank 國泰世華商業銀行
2023 ~ 现在
Backend developer/Full-stack developer
一個月內
. - Internal and External trainings : Problems solving , AC , Testing Build School Software Development Training Course(Microsoft Partner) , JanAug 2019 In order to improve my competitiveness, I attended Build School Software Development Training Course to learn more about another field. The course consists of front-end, back-end, database and ASP.NET MVC , ASP.NET Core lectures. There are a lot of practices ,implementations in the course( => My Portfolio ) . We improve our teamwork and cooperation to create a business internal environment as well. During the course , attended in Corporate Internship for two months to build
C#
ASP.NET MVC
ASP.NET Web API
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
Chung Hua University
Software Engineer, International Business
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Avatar of the user.
曾任
軟體工程師 @瑞莫科技
2022 ~ 2024
.NET 工程師
一個月內
JavaScript
c#.net
ASP.NET
待业中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
中原大學
資訊工程
Avatar of Ahmed Yousaf.
Avatar of Ahmed Yousaf.
曾任
Electrical Section Head @Sayyed Engineers Limited
2014 ~ 2016
Electrical and Electronics Engineer
三個月內
Ahmed Yousaf London, [email protected] https://www.linkedin.com/in/ahmed-yousaf-b/ Highly skilled Electrical/Software engineer with expertise in C# (.NET), proficient in Python, with a strong understanding of programming paradigms and software design patterns. Experienced in developing military-standard software and collaborating effectively in agile environments to deliver projects of varying scope and committed to leveraging technical expertise and collaborative skills to drive innovative software solutions. Work Experience Avionics Engineering Officer • Federal Government of Pakistan OctoberSeptember 2023 | Karachi, Pakistan Data Acquisition using
Microsoft Office
C++
C#
待业中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
University of Central Punjab
Electrical and Power Transmission Installation/Installer, General
Avatar of 曾安立.
Avatar of 曾安立.
曾任
軟體工程師 @鈦生量子科技有限公司
2020 ~ 2024
軟體工程師
一個月內
數值 專案內容: 碳匯面積計算及統計、私/公有林管理、面積繪製 框架: .NET MVC DB:SQL Server 串接第三方API: ArcGIS 套件: ApexChart.js 作品集 作品集 (因有保密協議所以只有圖片) 學歷 私立明道大學 | Ming Dao university 材料系 •技能 C# Vue.js Bootstrap jQuery Node.js ASP.NET MSSQL PostgreSQL 語言 English — 中階
C#
Vue.js
Bootstrap
待业中
正在积极求职中
全职 / 我只想远端工作
4 到 6 年
私立明道大學 | Ming Dao university
材料系
Avatar of Corey Lee.
Avatar of Corey Lee.
曾任
Senior Frontend Developer @恒遠科技有限公司
2022 ~ 2024
senior frontend engineer or frontend lead
一個月內
Corey Lee 專精於前端開發 涉獵不同的產業領域 在那都能成為主要產品線的要員 近期主要踏足在博彩產業 彩票網、包網、真人視訊遊戲、電子遊戲都富有實作經驗,可獨立開發或是帶領團隊一同邁向目標 Taipei City, Taiwan 工作經歷 Senior Frontend Developer • 恒遠科技有限公司
Vue.js
Vuex
Knockout.js
待业中
正在积极求职中
全职 / 对远端工作有兴趣
15 年以上
淡江大學
資訊工程
Avatar of 陳閔致.
Avatar of 陳閔致.
曾任
外包-全端工程師 @艾力克電機
2023 ~ 2023
前端工程師、後端工程師、全端工程師
兩個月內
陳閔致 國立雲林科技大學, 資訊管理系, 2019 ~ 2023 曾獲得107年商業類全國技藝競賽 程式設計職種 金手獎第一名 擁有三年多的後端開發 撰改開源軟體的經驗 彰化/台灣 [email protected] 工作經歷 艾力克電機, 外包案, 2023/07 ~ 2023/10 開發公司所需的功能
Word
Excel
程式設計
待业中
正在积极求职中
Intern / 对远端工作有兴趣
4 到 6 年
國立雲林科技大學
資訊管理系

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职场能力评价定义

专业技能
该领域中具备哪些专业能力(例如熟悉 SEO 操作,且会使用相关工具)。
问题解决能力
能洞察、分析问题,并拟定方案有效解决问题。
变通能力
遇到突发事件能冷静应对,并随时调整专案、客户、技术的相对优先序。
沟通能力
有效传达个人想法,且愿意倾听他人意见并给予反馈。
时间管理能力
了解工作项目的优先顺序,有效运用时间,准时完成工作内容。
团队合作能力
具有向心力与团队责任感,愿意倾听他人意见并主动沟通协调。
领导力
专注于团队发展,有效引领团队采取行动,达成共同目标。
一年內
Logo of TSMC.
TSMC
2021 ~ 2022
专业背景
目前状态
待业中
求职阶段
专业
软体工程师, 机器学习工程师
产业
人工智能 / 机器学习, 软件, 区块链
工作年资
小於 1 年
管理经历
技能
Python
C++
JAVA
OOP Programming
meta-heuristic algorithm
Azure DevOps
Deep Learning
tensorflow
SQL
语言能力
Chinese
母语或双语
English
中阶
求职偏好
希望获得的职位
Software Engineer / Backend Engineer / DevOps Engineer
预期工作模式
全职
期望的工作地点
Taipei, 台灣, Hsinchu, 新竹市台灣
远端工作意愿
对远端工作有兴趣
接案服务
学历
学校
國立中山大學 National Sun Yat-Sen University
主修科系
資訊工程所
列印

Zhe-Wei Xiao

  

[email protected]

+886917730565

Profile

I am Justin, who graduated from the department of Computer Science Engineering at National Sun Yat-sen University. I am friendly, optimistic, and willing to learn new knowledge. 

As a software engineer, I am proficient in using Python, C/C++, and Java, and have an understanding of Git, which I have utilized for collaborative development projects with team members. Additionally, I have experience with Azure CI/CD, Docker, and Kubernetes (K8s), which has allowed me to proficiently manage and deploy applications to the cloud. These technologies has enabled me to streamline the software development process and enhance the overall quality of the projects.

I have served as the co-PI of a project under the Ministry of Science and Technology, honing my skills in coordination and teamwork. During my university studies, I also acted as a teaching assistant for courses in Artificial Intelligence, Algorithms, and Individual Study, helping instructors address students' inquiries.

My research focus is on neural network training algorithms to enhance the accuracy of deep learning models. I have proposed a novel optimization algorithm in my thesis that combines meta-heuristic algorithms and gradient-based optimization techniques, effectively improving the accuracy of deep learning models. The effectiveness of the proposed algorithm is demonstrated through experiments on various types of datasets and neural network models.

Work Experience

Engineer of MTIT, TSMC September 2021 - April 2022

#VB #ASP.NET #SQL #Azure

  • Develop and operate the full automation systems running in 200mm FABs.

  • Engage with FAB users to develop high value requirements and solutions to conquer the challenges about manufacturing.

  • Transform repeatable tasks into automation tools (CI/CD)

Skills

  • Software Engineer

    • S.O.L.I.D
    • Design Pattern
    • MVC
  • Programming Language

    • Python
    • C/C++
    • Java

              

  • Deep Learning

    • Neural Network Optimization Algorithm
    • Hyper-Parameter Tuning Algorithm
  • Optimization Algorithm

    • Meta-heuristic Algorithm
    • Gradient-based Algorithm

Publications

Thesis

An Effective Optimizer based on Global and Local Searched Experiences for Neural Network Training.

This thesis proposes a novel hybrid optimizer, GLAdam, which combines the benefits of meta-heuristic and gradient-based methods. GLAdam calculates the update direction by incorporating both global and local searched experiences, leading to an improved optimization process. The performance of GLAdam was evaluated through time series numerical forecasting and image classification experiments, demonstrating its effectiveness in training machine learning models.

Conference paper

ACM ICEA, “An Effective Optimizer based on Global and Local Searched Experiences for Short-term Electricity Consumption Forecasting”, Korea, 2020

This study presents a novel optimization algorithm, GLAdam, aimed at addressing the limitations of conventional gradient-based optimization methods. GLAdam incorporates a heuristic mechanism that leverages past search experiences, resulting in a more efficient exploration-exploitation trade-off during the optimization process. The results of experiments on time series numerical forecasting and image classification datasets show that GLAdam outperforms popular optimization algorithms such as Adagrad, RMSprop, and Adam, with an improvement in accuracy of 5.37% compared to the best performing algorithm.

ACM ICEA, “An Effective Multi-Swarm Algorithm for Optimizing Hyperparameters of DNN”, Korea, 2020

This study proposes an improved Multi-Swarm Particle Swarm Optimization (MSPSO) algorithm for optimizing hyperparameters of Deep Neural Networks (DNNs). The proposed algorithm outperforms traditional methods and was evaluated on Taipei passenger data, demonstrating improved accuracy in predicting the number of passengers for Taipei metro stations compared to other machine learning algorithms, DNN, and PSO with DNN.

Ministry of Science and Technology Program

A High-Efficiency Smart Grid Management System Combining Deep learning and Meta-heuristic Algorithms — 2020

    • Using particle swarm optimization algorithm and search economic algorithm to improve the optimizer in deep learning to provide an accurate electric load forecasting model
    • Using genetic algorithms to adaptively adjust the convolutional neural network structure and feature extraction of abnormal power consumption in smart grids

Towards Deep Learning for Next-Generation Automation: A Case Study of Intelligent Traffic Control Systems — 2021

    • Using AutoML to predict traffic flow on plane roads and predict people flow in mass transit systems
    • Using federated learning to control traffic lights at multiple intersections
    • Road Travel Recommendation Using Reinforcement Learning
简历
个人档案

Zhe-Wei Xiao

  

[email protected]

+886917730565

Profile

I am Justin, who graduated from the department of Computer Science Engineering at National Sun Yat-sen University. I am friendly, optimistic, and willing to learn new knowledge. 

As a software engineer, I am proficient in using Python, C/C++, and Java, and have an understanding of Git, which I have utilized for collaborative development projects with team members. Additionally, I have experience with Azure CI/CD, Docker, and Kubernetes (K8s), which has allowed me to proficiently manage and deploy applications to the cloud. These technologies has enabled me to streamline the software development process and enhance the overall quality of the projects.

I have served as the co-PI of a project under the Ministry of Science and Technology, honing my skills in coordination and teamwork. During my university studies, I also acted as a teaching assistant for courses in Artificial Intelligence, Algorithms, and Individual Study, helping instructors address students' inquiries.

My research focus is on neural network training algorithms to enhance the accuracy of deep learning models. I have proposed a novel optimization algorithm in my thesis that combines meta-heuristic algorithms and gradient-based optimization techniques, effectively improving the accuracy of deep learning models. The effectiveness of the proposed algorithm is demonstrated through experiments on various types of datasets and neural network models.

Work Experience

Engineer of MTIT, TSMC September 2021 - April 2022

#VB #ASP.NET #SQL #Azure

  • Develop and operate the full automation systems running in 200mm FABs.

  • Engage with FAB users to develop high value requirements and solutions to conquer the challenges about manufacturing.

  • Transform repeatable tasks into automation tools (CI/CD)

Skills

  • Software Engineer

    • S.O.L.I.D
    • Design Pattern
    • MVC
  • Programming Language

    • Python
    • C/C++
    • Java

              

  • Deep Learning

    • Neural Network Optimization Algorithm
    • Hyper-Parameter Tuning Algorithm
  • Optimization Algorithm

    • Meta-heuristic Algorithm
    • Gradient-based Algorithm

Publications

Thesis

An Effective Optimizer based on Global and Local Searched Experiences for Neural Network Training.

This thesis proposes a novel hybrid optimizer, GLAdam, which combines the benefits of meta-heuristic and gradient-based methods. GLAdam calculates the update direction by incorporating both global and local searched experiences, leading to an improved optimization process. The performance of GLAdam was evaluated through time series numerical forecasting and image classification experiments, demonstrating its effectiveness in training machine learning models.

Conference paper

ACM ICEA, “An Effective Optimizer based on Global and Local Searched Experiences for Short-term Electricity Consumption Forecasting”, Korea, 2020

This study presents a novel optimization algorithm, GLAdam, aimed at addressing the limitations of conventional gradient-based optimization methods. GLAdam incorporates a heuristic mechanism that leverages past search experiences, resulting in a more efficient exploration-exploitation trade-off during the optimization process. The results of experiments on time series numerical forecasting and image classification datasets show that GLAdam outperforms popular optimization algorithms such as Adagrad, RMSprop, and Adam, with an improvement in accuracy of 5.37% compared to the best performing algorithm.

ACM ICEA, “An Effective Multi-Swarm Algorithm for Optimizing Hyperparameters of DNN”, Korea, 2020

This study proposes an improved Multi-Swarm Particle Swarm Optimization (MSPSO) algorithm for optimizing hyperparameters of Deep Neural Networks (DNNs). The proposed algorithm outperforms traditional methods and was evaluated on Taipei passenger data, demonstrating improved accuracy in predicting the number of passengers for Taipei metro stations compared to other machine learning algorithms, DNN, and PSO with DNN.

Ministry of Science and Technology Program

A High-Efficiency Smart Grid Management System Combining Deep learning and Meta-heuristic Algorithms — 2020

    • Using particle swarm optimization algorithm and search economic algorithm to improve the optimizer in deep learning to provide an accurate electric load forecasting model
    • Using genetic algorithms to adaptively adjust the convolutional neural network structure and feature extraction of abnormal power consumption in smart grids

Towards Deep Learning for Next-Generation Automation: A Case Study of Intelligent Traffic Control Systems — 2021

    • Using AutoML to predict traffic flow on plane roads and predict people flow in mass transit systems
    • Using federated learning to control traffic lights at multiple intersections
    • Road Travel Recommendation Using Reinforcement Learning